应付即时通讯蠕虫-统计建模和分析

Zhijun Liu, David Lee
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引用次数: 12

摘要

由于即时通讯系统的实时性和存在信息,蠕虫在即时通讯网络中的传播速度比Internet/E-mail蠕虫更快。建模是应对这些问题不可或缺的过程。现有的蠕虫建模技术大多基于确定性生物流行病学。流行病模型只能定量地捕捉蠕虫的预期行为,可能不足以模拟蠕虫传播的早期阶段,因为受感染的宿主数量很少。在本文中,我们提出了一个统计分支过程来建模IM蠕虫。通过在IM蠕虫建模中引入用户响应时间的随机变量,我们可以对蠕虫的行为进行更精确和复杂的分析,特别是对蠕虫传播的早期阶段。该分析为如何防御IM蠕虫提供了指导。
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Coping with Instant Messaging Worms - Statistical Modeling and Analysis
Due to the real time nature and presence information of instant messaging (IM) system, worms spread over IM networks more rapidly than Internet/E-mail worms. Modeling is an indispensable process for coping with them. Most of existing worm modeling techniques are based on deterministic biological epidemiology. Epidemic models only capture the expected worm behavior quantitatively and may not be adequate to model the early phase of worm propagation when the number of infected hosts is small. In this paper, we present a statistical branching process for modeling IM worms. By introducing stochastic variables for user response time in IM worm modeling, we are able to conduct more accurate and sophisticated analysis of worm's behaviors, especially for the early phase of worm propagation. The analysis provides a guideline on how to defend against IM worms.
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